Highly Reliable Fault Detection and Classification Algorithm for Induction Motors

Chul-Hee Hwang, Myeongsu Kang, Yong-Bum Jung, Jong-Myon Kim
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Abstract

This paper proposes a 3-stage (preprocessing, feature extraction, and classification) fault detection and classification algorithm for induction motors. In the first stage, a low-pass filter is used to remove noise components in the fault signal. In the second stage, a discrete cosine transform (DCT) and a statistical method are used to extract features of the fault signal. Finally, a back propagation neural network (BPNN) method is applied to classify the fault signal. To evaluate the performance of the proposed algorithm, we used one second long normal/abnormal vibration signals of an induction motor sampled at 8kHz. Experimental results showed that the proposed algorithm achieves about 100% accuracy in fault classification, and it provides 50% improved accuracy when compared to the existing fault detection algorithm using a cross-covariance method. In a real-world data acquisition environment, unnecessary noise components are usually included to the real signal. Thus, we conducted an additional simulation to evaluate how well the proposed algorithm classifies the fault signals in a circumstance where a white Gaussian noise is inserted into the fault signals. The simulation results showed that the proposed algorithm achieves over 98% accuracy in fault classification. Moreover, we developed a testbed system including a TI`s DSP (digital signal processor) to implement and verify the functionality of the proposed algorithm.
感应电机高可靠故障检测与分类算法
提出了一种异步电动机故障检测与分类的预处理、特征提取和分类三阶段算法。在第一级,使用低通滤波器去除故障信号中的噪声成分。第二阶段,采用离散余弦变换(DCT)和统计方法提取故障信号的特征。最后,采用反向传播神经网络(BPNN)方法对故障信号进行分类。为了评估所提出算法的性能,我们使用了在8kHz采样的感应电机的一秒长正常/异常振动信号。实验结果表明,该算法的故障分类准确率约为100%,与现有的交叉协方差故障检测算法相比,准确率提高了50%。在实际的数据采集环境中,实际信号中通常包含不必要的噪声成分。因此,我们进行了额外的模拟,以评估在故障信号中插入高斯白噪声的情况下,所提出的算法对故障信号的分类效果。仿真结果表明,该算法的故障分类准确率达到98%以上。此外,我们开发了一个测试平台系统,包括TI的DSP(数字信号处理器)来实现和验证所提出算法的功能。
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